Axiomatic AI"s mission :
Axiomatic AI is launching with the aim to accelerate R&D by "Automated Interpretable Reasoning" (AIR) a verifiably truthful AI model built for reasoning in science and engineering.
Axiomatic AI is hiring top talent interested in a future of human reasoning aided by not replaced by AI, and a future that empowers a new generation of innovators to solve important problems through deep-tech engineering in the semiconductor ecosystem.
Please see below for co-working project opportunities at Axiomatic AI.
Competitive Programming Projects
Project 1 : Enhancing AI-Powered Code Synthesis
Overview : This project focuses on advancing the capabilities of AI-powered code synthesis tools like AlphaCode. The goal is to develop algorithms that can automatically generate efficient and correct code from high-level problem descriptions.
- Objectives :
- Develop new algorithms for code generation that improve upon current state-of-the-art models.
- Implement a robust verification system to ensure the correctness of the generated code.
- Integrate the system with Axiomatic AI's CDT generator and verifier.
- Expected Outcomes :
- Enhanced code synthesis capabilities.
- Improved accuracy and efficiency in generated code.
- Seamless integration with Axiomatic AI's existing platforms.
- Requirements : Strong background in machine learning, natural language processing, and programming languages.
- References :
AlphaCode : Developing Code Generation Algorithms" Research Paper
GitHub - AlphaCode Repository , Codex Examples
Project 2 : Optimizing Code through Automated Refactoring
Overview : This project aims to develop AI-driven tools for automated code refactoring, improving code quality and maintainability.
The focus is on integrating these tools with Axiomatic AI's suite of optimizers.
- Objectives :
- Create algorithms for identifying refactoring opportunities in codebases.
- Develop methods for automated code refactoring and optimization.
- Test and validate the tools within real-world code repositories.
- Expected Outcomes :
- Automated tools for code refactoring.
- Improved code quality and performance.
- Integration with Axiomatic AI's optimization suite.
- Requirements : Experience in software engineering, machine learning, and software optimization techniques.
- References :
- AlphaProof
- SlotFormer : Unsupervised Visual Dynamics Simulation with Object-Centric Models : Ziyi Wu, Nikita Dvornik, Klaus Greff, Thomas Kipf, and Animesh Garg arXiv preprint arXiv : 2210.05861 2022
Project : AI Code Synthesis for Microelectronics Design
Overview : This project focuses on developing AI-driven code synthesis tools for automating the design and verification of microelectronic circuits.
- Objectives :
- Develop AI algorithms for generating Verilog / VHDL code for microelectronics designs.
- Implement a verification system to ensure the correctness of synthesized designs.
- Test and validate the system on real-world microelectronics projects.
- Expected Outcomes :
- Automated code synthesis tools for microelectronics design.
- Improved design efficiency and correctness.
- Validation on real-world microelectronics projects.
- Requirements : Strong background in digital circuit design, Verilog / VHDL, and machine learning.
- References :
Micro / Nano Circuits and Systems Design and Design Automation" Research Paper
- GitHub - OpenROAD : Open Source EDA
- https : / / arxiv.org / abs / 2405.16380
- GitHub - EDA Tools and Resources
- https : / / ieeexplore.ieee.org / document / 10253952
Project : AI-Driven Photonic Integrated Circuit (PIC) Design Automation
Overview : This project aims to create AI-powered tools for the design and optimization of photonic integrated circuits (PICs), enhancing the design process and reducing time-to-market.
- Objectives :
- Develop AI algorithms for synthesizing PIC designs from high-level specifications.
- Create optimization techniques for improving PIC performance and efficiency.
- Validate the tools with real-world PIC designs.
- Expected Outcomes :
- AI-driven synthesis tools for PIC design.
- Enhanced performance and efficiency of PICs.
- Successful validation with real-world PIC projects.
- Requirements : Expertise in photonic circuit design, optimization algorithms, and machine learning.
- References :
- https : / / proceedings.mlr.press / v235 / chen24ad.html
- GitHub - Photonics Simulation Tools
Digital Twins Projects
Project 1 : Advanced Digital Twin Integration for AXI
Overview : This project explores the integration of digital twin technologies within the Axiomatic AI framework, focusing on real-time data synchronization and predictive analytics.
- Objectives :
- Develop methods for real-time data integration from IoT devices into digital twins.
- Implement predictive analytics to enhance operational efficiency.
- Validate the system in AXI-relevant industries.
- Expected Outcomes :
- Real-time integrated digital twin systems.
- Enhanced predictive analytics capabilities.
- Demonstrated benefits in AXI-relevant industries.
- Requirements : Background in IoT, data analytics, and digital twin technologies.
- References :
Digital Twin for Industry 4.0 : Real-Time Integration and Analytics" Research Paper
GitHub - Azure Digital Twins
Predictive Analytics in Industry 4.0 Using Digital Twins" Research Paper
GitHub - Industry 4.0 Solutions
Project 2 : Digital Twin Framework for Engineering Systems
Overview : This project focuses on creating a comprehensive digital twin framework for engineering systems, enabling better design, simulation, and validation processes.
- Objectives :
- Develop a scalable framework for creating digital twins of engineering systems.
- Integrate real-time data from various engineering processes.
- Implement analytics for design and operational optimization.
- Expected Outcomes :
- Scalable digital twin framework for engineering systems.
- Enhanced design and operational optimization capabilities.
- Successful pilot deployment in AXI-relevant engineering projects.
- Requirements : Expertise in engineering design, data integration, and digital twin technologies.
- References :
- https : / / nap.nationalacademies.org / catalog / 26894 / foundational-research-gaps-and-future-directions-for-digital-twins?
utm source NASEM+Math+and+Statistics&utm campaign 87b2f564c2-EMAIL CAMPAIGN 2023 05 15 01 42 COPY 01&utm medium email&utm term 0 -a0739a5cef-%5BLIST EMAIL ID%5D
NVIDIA Omniverse
Probabilistic Machine Learning Projects
Project 1 : Probabilistic Models for Uncertainty Quantification in AI
Overview : This project aims to develop probabilistic models that can quantify uncertainty in AI predictions, improving the reliability of AI systems.
- Objectives :
- Develop new probabilistic models for uncertainty quantification.
- Integrate these models with existing AI systems to enhance decision-making.
- Validate the models in real-world applications.
- Expected Outcomes :
- Improved uncertainty quantification models.
- Enhanced reliability of AI predictions.
- Successful integration and validation in real-world scenarios.
- Requirements : Strong background in probabilistic modeling, statistics, and machine learning.
- References :
- https : / / probml.github.io / pml-book / book1.html
- GitHub - Bayesian Deep Learning
Project 2 : Integrating Factor Networks and Knowledge Graphs for Enhanced AI Reasoning
Overview : This project explores the use of factor networks and knowledge graphs to improve AI reasoning and decision-making processes.
- Objectives :
- Develop methods for integrating factor networks with knowledge graphs to represent complex relationships.
- Apply these integrated models to enhance AI reasoning and inference capabilities.
- Validate the effectiveness of the integrated models in real-world scenarios.
- Expected Outcomes :
- Advanced techniques for integrating factor networks and knowledge graphs.
- Improved AI reasoning and decision-making capabilities.
- Validation through case studies in various domains.
- Requirements : Expertise in probabilistic graphical models, knowledge graphs, and machine learning.
- References :
Knowledge Graphs : Principles and Applications" Research Paper
GitHub - Knowledge Graph Toolkit
PI254973629